Machine Learning Research Scientist - Robotics, Trustworthy Learning under Uncertainty (TLU)
Company: Toyota Research Institute
Location: Los Altos
Posted on: April 2, 2026
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Job Description:
At Toyota Research Institute (TRI), we’re on a mission to
improve the quality of human life. We’re developing new tools and
capabilities to amplify the human experience. To lead this
transformative shift in mobility, we’ve built a world-class team
advancing the state of the art in AI, robotics, driving, and
material sciences. The Mission To conduct cutting-edge research
that will enable general-purpose robots to be reliably deployed at
scale in human environments. The Challenge We envision a future
where robots assist with household chores and cooking, aid the
elderly in maintaining their independence, and enable people to
spend more time on the activities they enjoy most. To achieve this,
robots need to operate reliably in messy, unstructured
environments. Recent years have witnessed a surge in the use of
foundation models in various application domains, particularly in
robotics. These “large behavior models” (LBMs) are enhancing the
capabilities of autonomous robots to perform complex tasks in open,
interactive environments. TRI Robotics is at the forefront of this
emerging field by applying insights from foundation models,
including large-scale pre-training and generative deep learning.
However, ensuring the reliability of LBMs for large-scale
deployment in diverse operating conditions remains a challenge. The
Team We aim to make progress on some of the hardest scientific
challenges in the safe and effective use and development of machine
learning algorithms in robotics. To this end, the research mission
of the Trustworthy Learning under Uncertainty (TLU) team within the
Robotics division is to enable the robust, reliable, and adaptive
deployment of LBMs at scale in human environments. To guarantee
dependable deployment at scale in the years to come, we are
dedicated to enhancing trustworthiness of LBMs through three key
principles, as detailed (i) ensuring objective assessment of policy
performance (Rigorous Evaluation), (ii) improving the ability to
detect and handle unknown situations and return to nominal
performance (Failure Detection and Mitigation), and (iii)
developing the capability to identify and adapt to new information
(Active / Continual Learning). Our team has deep cross-functional
expertise across controls, uncertainty-aware ML, statistics, and
robotics. We measure our success by advancing the state of the art
through algorithmic innovations and publishing these results in
high-impact journals and conferences. We value contributions of
reproducible and usable open-source software. The Opportunity We
are looking for a driven research scientist with a strong
background in embodied machine learning and a “make it happen”
mentality. Specifically, we are looking for expertise across a
variety of areas, including Policy Evaluation, Failure Detection
and Mitigation, and Active Learning in the context of Large
Behavior Models (LBMs) for robotic manipulation. Our topics of
interest include but are not limited to: Multi-Modal Foundation
Models, Generative Modeling, Imitation Learning, Reinforcement
Learning, Planning & Control, Statistics, Uncertainty Estimation,
Out-of-Distribution Detection, Safety-Aware & Robust ML,
(Inter)Active Learning, and Online / Continual Learning. The ideal
candidate is able to conduct research independently and works well
as part of a larger research team at the cutting edge of
state-of-the-art robotics and machine learning. Experience with
robots is preferred, particularly in manipulation. If our mission
of robust, reliable, and adaptive deployment of LBMs at scale in
human environments resonates with you, reach out by submitting an
application! Responsibilities Work as part of a dynamic,
closely-knit team conducting research on reliable, robust, and
adaptive deployment of machine learning models in robot
manipulation. Push the boundaries of knowledge and the
state-of-the-art in Robotics and LBMs. Contribute to cutting-edge
development in the areas of: Rigorous Policy Evaluation, Failure
Detection and Mitigation, and Active / Continual Learning. Be a key
member of the team and play a critical role in rapid progress
measured by both the development of internal capabilities and
high-impact external publication. Collaborate with internal
research scientists and engineers across the TLU team, Robotics
division, TRI, and Toyota, as well as our university partners
across top academic research universities, such as MIT, Stanford,
CMU, Columbia, USC, and Princeton. Present results in verbal and
written communications at international conferences, internally,
and via open-source contributions to the community. Qualifications
A Ph.D. in Machine Learning, Robotics, or related fields.
Passionate about large scale challenges in ML grounded in physical
systems, especially in the space of robotic manipulation. Expertise
in Multi-Modal Foundation Models, Generative Modeling, Imitation
Learning, Reinforcement Learning, Planning & Control, Statistics,
Uncertainty Estimation, Out-of-Distribution Detection, Safety-Aware
& Robust ML, (Inter)Active Learning, and/or Online / Continual
Learning. A strong track record of publication at high-impact
conferences/journals (e.g., CoRL, ICLR, NeurIPS, ICML, UAI,
AISTATS, AAAI, TMLR, RSS, ICRA, IROS, RA-L, T-RO, CDC, L4DC, etc.)
on some of the aforementioned topics. Proficiency with one or more
coding languages and systems, preferably Python, Unix, and a Deep
Learning framework (e.g., PyTorch). Ability to collaborate with
other researchers and engineers of the TLU team, and, more broadly,
the Robotics division to invent and develop interesting research
ideas. A reliable teammate who loves to think big, go deeper, and
deliver with integrity. Bonus Qualifications Some familiarity with
robots and the challenges inherent in conducting research on
physical hardware platform. Familiarity with data pipelines, model
serving and optimization, cloud training, and dataset management is
also useful. The pay range for this position at commencement of
employment is expected to be between $200,000 and $287,500/year for
California-based roles. Base pay offered will depend on multiple
individualized factors, including, but not limited to, a
candidate's experience, skills, job-related knowledge, and market
location. TRI offers a generous benefits package including medical,
dental, and vision insurance, 401(k) eligibility, paid time off
benefits (including vacation, sick time, and parental leave), and
an annual cash bonus structure. Additional details regarding these
benefit plans will be provided if an employee receives an offer of
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experiences. We are dedicated to fostering an innovative and
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essential part of our culture. We believe diversity makes us
stronger and are proud to provide Equal Employment Opportunity for
all, without regard to an applicant’s race, color, creed, gender,
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in Massachusetts to require or administer a lie detector test as a
condition of employment or continued employment. An employer who
violates this law shall be subject to criminal penalties and civil
liability. Pursuant to the San Francisco Fair Chance Ordinance, we
will consider qualified applicants with arrest and conviction
records for employment. We may use artificial intelligence (AI)
tools to support parts of the hiring process, such as reviewing
applications, analyzing resumes, or assessing responses. These
tools assist our recruitment team but do not replace human
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please contact us.
Keywords: Toyota Research Institute, Laguna , Machine Learning Research Scientist - Robotics, Trustworthy Learning under Uncertainty (TLU), Science, Research & Development , Los Altos, California